{
 "cells": [
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "Recurrent Neural networks\n",
    "====="
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### RNN  "
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "<img src=\"../imgs/rnn.png\" width=\"20%\">"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "A recurrent neural network (RNN) is a class of artificial neural network where connections between units form a directed cycle. This creates an internal state of the network which allows it to exhibit dynamic temporal behavior."
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "collapsed": true
   },
   "source": [
    "```python\n",
    "keras.layers.recurrent.SimpleRNN(units, activation='tanh', use_bias=True, \n",
    "                                 kernel_initializer='glorot_uniform', \n",
    "                                 recurrent_initializer='orthogonal', \n",
    "                                 bias_initializer='zeros', \n",
    "                                 kernel_regularizer=None, \n",
    "                                 recurrent_regularizer=None, \n",
    "                                 bias_regularizer=None, \n",
    "                                 activity_regularizer=None, \n",
    "                                 kernel_constraint=None, recurrent_constraint=None, \n",
    "                                 bias_constraint=None, dropout=0.0, recurrent_dropout=0.0)\n",
    "```"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "#### Arguments:\n",
    "\n",
    "<ul>\n",
    "<li><strong>units</strong>: Positive integer, dimensionality of the output space.</li>\n",
    "<li><strong>activation</strong>: Activation function to use\n",
    "    (see <a href=\"http://keras.io/activations/\">activations</a>).\n",
    "    If you pass None, no activation is applied\n",
    "    (ie. \"linear\" activation: <code>a(x) = x</code>).</li>\n",
    "<li><strong>use_bias</strong>: Boolean, whether the layer uses a bias vector.</li>\n",
    "<li><strong>kernel_initializer</strong>: Initializer for the <code>kernel</code> weights matrix,\n",
    "    used for the linear transformation of the inputs.\n",
    "    (see <a href=\"https://keras.io/initializers/\">initializers</a>).</li>\n",
    "<li><strong>recurrent_initializer</strong>: Initializer for the <code>recurrent_kernel</code>\n",
    "    weights matrix,\n",
    "    used for the linear transformation of the recurrent state.\n",
    "    (see <a href=\"https://keras.io/initializers/\">initializers</a>).</li>\n",
    "<li><strong>bias_initializer</strong>: Initializer for the bias vector\n",
    "    (see <a href=\"https://keras.io/initializers/\">initializers</a>).</li>\n",
    "<li><strong>kernel_regularizer</strong>: Regularizer function applied to\n",
    "    the <code>kernel</code> weights matrix\n",
    "    (see <a href=\"https://keras.io/regularizers/\">regularizer</a>).</li>\n",
    "<li><strong>recurrent_regularizer</strong>: Regularizer function applied to\n",
    "    the <code>recurrent_kernel</code> weights matrix\n",
    "    (see <a href=\"https://keras.io/regularizers/\">regularizer</a>).</li>\n",
    "<li><strong>bias_regularizer</strong>: Regularizer function applied to the bias vector\n",
    "    (see <a href=\"https://keras.io/regularizers/\">regularizer</a>).</li>\n",
    "<li><strong>activity_regularizer</strong>: Regularizer function applied to\n",
    "    the output of the layer (its \"activation\").\n",
    "    (see <a href=\"https://keras.io/regularizers/\">regularizer</a>).</li>\n",
    "<li><strong>kernel_constraint</strong>: Constraint function applied to\n",
    "    the <code>kernel</code> weights matrix\n",
    "    (see <a href=\"https://keras.io/constraints/\">constraints</a>).</li>\n",
    "<li><strong>recurrent_constraint</strong>: Constraint function applied to\n",
    "    the <code>recurrent_kernel</code> weights matrix\n",
    "    (see <a href=\"https://keras.io/constraints/\">constraints</a>).</li>\n",
    "<li><strong>bias_constraint</strong>: Constraint function applied to the bias vector\n",
    "    (see <a href=\"https://keras.io/constraints/\">constraints</a>).</li>\n",
    "<li><strong>dropout</strong>: Float between 0 and 1.\n",
    "    Fraction of the units to drop for\n",
    "    the linear transformation of the inputs.</li>\n",
    "<li><strong>recurrent_dropout</strong>: Float between 0 and 1.\n",
    "    Fraction of the units to drop for\n",
    "    the linear transformation of the recurrent state.</li>\n",
    "</ul>"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "#### Backprop Through time  "
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "Contrary to feed-forward neural networks, the RNN is characterized by the ability of encoding longer past information, thus very suitable for sequential models. The BPTT extends the ordinary BP algorithm to suit the recurrent neural\n",
    "architecture."
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "scrolled": true
   },
   "source": [
    "<img src=\"../imgs/rnn2.png\" width=\"45%\">"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "**Reference**: [Backpropagation through Time](http://ir.hit.edu.cn/~jguo/docs/notes/bptt.pdf)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {
    "collapsed": true
   },
   "outputs": [],
   "source": [
    "%matplotlib inline"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Using TensorFlow backend.\n"
     ]
    }
   ],
   "source": [
    "import numpy as np\n",
    "import pandas as pd\n",
    "import theano\n",
    "import theano.tensor as T\n",
    "import keras \n",
    "\n",
    "import numpy as np\n",
    "import matplotlib.pyplot as plt\n",
    "\n",
    "from sklearn.preprocessing import LabelEncoder\n",
    "from sklearn.preprocessing import StandardScaler\n",
    "from sklearn.model_selection import train_test_split\n",
    "# -- Keras Import\n",
    "from keras.models import Sequential\n",
    "from keras.layers import Dense, Activation\n",
    "from keras.preprocessing import image\n",
    "\n",
    "from keras.datasets import imdb\n",
    "from keras.datasets import mnist\n",
    "\n",
    "from keras.models import Sequential\n",
    "from keras.layers import Dense, Dropout, Activation, Flatten\n",
    "from keras.layers import Conv2D, MaxPooling2D\n",
    "\n",
    "from keras.utils import np_utils\n",
    "from keras.preprocessing import sequence\n",
    "from keras.layers.embeddings import Embedding\n",
    "from keras.layers.recurrent import LSTM, GRU, SimpleRNN\n",
    "\n",
    "from keras.layers import Activation, TimeDistributed, RepeatVector\n",
    "from keras.callbacks import EarlyStopping, ModelCheckpoint"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## IMDB sentiment classification task"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "This is a dataset for binary sentiment classification containing substantially more data than previous benchmark datasets. \n",
    "\n",
    "IMDB provided a set of 25,000 highly polar movie reviews for training, and 25,000 for testing. \n",
    "\n",
    "There is additional unlabeled data for use as well. Raw text and already processed bag of words formats are provided. \n",
    "\n",
    "http://ai.stanford.edu/~amaas/data/sentiment/"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Data Preparation - IMDB"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Loading data...\n",
      "Downloading data from https://s3.amazonaws.com/text-datasets/imdb.npz\n",
      "25000 train sequences\n",
      "25000 test sequences\n",
      "Example:\n",
      "[ [1, 14, 22, 16, 43, 530, 973, 1622, 1385, 65, 458, 4468, 66, 3941, 4, 173, 36, 256, 5, 25, 100, 43, 838, 112, 50, 670, 2, 9, 35, 480, 284, 5, 150, 4, 172, 112, 167, 2, 336, 385, 39, 4, 172, 4536, 1111, 17, 546, 38, 13, 447, 4, 192, 50, 16, 6, 147, 2025, 19, 14, 22, 4, 1920, 4613, 469, 4, 22, 71, 87, 12, 16, 43, 530, 38, 76, 15, 13, 1247, 4, 22, 17, 515, 17, 12, 16, 626, 18, 19193, 5, 62, 386, 12, 8, 316, 8, 106, 5, 4, 2223, 5244, 16, 480, 66, 3785, 33, 4, 130, 12, 16, 38, 619, 5, 25, 124, 51, 36, 135, 48, 25, 1415, 33, 6, 22, 12, 215, 28, 77, 52, 5, 14, 407, 16, 82, 10311, 8, 4, 107, 117, 5952, 15, 256, 4, 2, 7, 3766, 5, 723, 36, 71, 43, 530, 476, 26, 400, 317, 46, 7, 4, 12118, 1029, 13, 104, 88, 4, 381, 15, 297, 98, 32, 2071, 56, 26, 141, 6, 194, 7486, 18, 4, 226, 22, 21, 134, 476, 26, 480, 5, 144, 30, 5535, 18, 51, 36, 28, 224, 92, 25, 104, 4, 226, 65, 16, 38, 1334, 88, 12, 16, 283, 5, 16, 4472, 113, 103, 32, 15, 16, 5345, 19, 178, 32]]\n",
      "Pad sequences (samples x time)\n",
      "X_train shape: (25000, 100)\n",
      "X_test shape: (25000, 100)\n"
     ]
    }
   ],
   "source": [
    "max_features = 20000\n",
    "maxlen = 100  # cut texts after this number of words (among top max_features most common words)\n",
    "batch_size = 32\n",
    "\n",
    "print(\"Loading data...\")\n",
    "(X_train, y_train), (X_test, y_test) = imdb.load_data(num_words=max_features)\n",
    "print(len(X_train), 'train sequences')\n",
    "print(len(X_test), 'test sequences')\n",
    "\n",
    "print('Example:')\n",
    "print(X_train[:1])\n",
    "\n",
    "print(\"Pad sequences (samples x time)\")\n",
    "X_train = sequence.pad_sequences(X_train, maxlen=maxlen)\n",
    "X_test = sequence.pad_sequences(X_test, maxlen=maxlen)\n",
    "print('X_train shape:', X_train.shape)\n",
    "print('X_test shape:', X_test.shape)"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "#### Model building "
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 7,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Build model...\n",
      "Train...\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "/Users/valerio/anaconda3/envs/deep-learning-pydatait-tutorial/lib/python3.5/site-packages/keras/backend/tensorflow_backend.py:2094: UserWarning: Expected no kwargs, you passed 1\n",
      "kwargs passed to function are ignored with Tensorflow backend\n",
      "  warnings.warn('\\n'.join(msg))\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Train on 25000 samples, validate on 25000 samples\n",
      "Epoch 1/1\n",
      "25000/25000 [==============================] - 104s - loss: 0.7329 - val_loss: 0.6832\n"
     ]
    },
    {
     "data": {
      "text/plain": [
       "<keras.callbacks.History at 0x138767780>"
      ]
     },
     "execution_count": 7,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "print('Build model...')\n",
    "model = Sequential()\n",
    "model.add(Embedding(max_features, 128, input_length=maxlen))\n",
    "model.add(SimpleRNN(128))  \n",
    "model.add(Dropout(0.5))\n",
    "model.add(Dense(1))\n",
    "model.add(Activation('sigmoid'))\n",
    "\n",
    "# try using different optimizers and different optimizer configs\n",
    "model.compile(loss='binary_crossentropy', optimizer='adam')\n",
    "\n",
    "print(\"Train...\")\n",
    "model.fit(X_train, y_train, batch_size=batch_size, epochs=1, \n",
    "          validation_data=(X_test, y_test))"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### LSTM  "
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "A LSTM network is an artificial neural network that contains LSTM blocks instead of, or in addition to, regular network units. A LSTM block may be described as a \"smart\" network unit that can remember a value for an arbitrary length of time. \n",
    "\n",
    "Unlike traditional RNNs, an Long short-term memory network is well-suited to learn from experience to classify, process and predict time series when there are very long time lags of unknown size between important events."
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "scrolled": true
   },
   "source": [
    "<img src=\"../imgs/gru.png\" width=\"60%\">"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "collapsed": true
   },
   "source": [
    "```python\n",
    "keras.layers.recurrent.LSTM(units, activation='tanh', recurrent_activation='hard_sigmoid', use_bias=True, \n",
    "                            kernel_initializer='glorot_uniform', recurrent_initializer='orthogonal', \n",
    "                            bias_initializer='zeros', unit_forget_bias=True, kernel_regularizer=None, \n",
    "                            recurrent_regularizer=None, bias_regularizer=None, activity_regularizer=None, \n",
    "                            kernel_constraint=None, recurrent_constraint=None, bias_constraint=None, \n",
    "                            dropout=0.0, recurrent_dropout=0.0)\n",
    "```"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "#### Arguments\n",
    "\n",
    "<ul>\n",
    "<li><strong>units</strong>: Positive integer, dimensionality of the output space.</li>\n",
    "<li><strong>activation</strong>: Activation function to use\n",
    "    If you pass None, no activation is applied\n",
    "    (ie. \"linear\" activation: <code>a(x) = x</code>).</li>\n",
    "<li><strong>recurrent_activation</strong>: Activation function to use\n",
    "    for the recurrent step.</li>\n",
    "<li><strong>use_bias</strong>: Boolean, whether the layer uses a bias vector.</li>\n",
    "<li><strong>kernel_initializer</strong>: Initializer for the <code>kernel</code> weights matrix,\n",
    "    used for the linear transformation of the inputs.</li>\n",
    "<li><strong>recurrent_initializer</strong>: Initializer for the <code>recurrent_kernel</code>\n",
    "    weights matrix,\n",
    "    used for the linear transformation of the recurrent state.</li>\n",
    "<li><strong>bias_initializer</strong>: Initializer for the bias vector.</li>\n",
    "<li><strong>unit_forget_bias</strong>: Boolean.\n",
    "    If True, add 1 to the bias of the forget gate at initialization.\n",
    "    Setting it to true will also force <code>bias_initializer=\"zeros\"</code>.\n",
    "    This is recommended in <a href=\"http://www.jmlr.org/proceedings/papers/v37/jozefowicz15.pdf\">Jozefowicz et al.</a></li>\n",
    "<li><strong>kernel_regularizer</strong>: Regularizer function applied to\n",
    "    the <code>kernel</code> weights matrix.</li>\n",
    "<li><strong>recurrent_regularizer</strong>: Regularizer function applied to\n",
    "    the <code>recurrent_kernel</code> weights matrix.</li>\n",
    "<li><strong>bias_regularizer</strong>: Regularizer function applied to the bias vector.</li>\n",
    "<li><strong>activity_regularizer</strong>: Regularizer function applied to\n",
    "    the output of the layer (its \"activation\").</li>\n",
    "<li><strong>kernel_constraint</strong>: Constraint function applied to\n",
    "    the <code>kernel</code> weights matrix.</li>\n",
    "<li><strong>recurrent_constraint</strong>: Constraint function applied to\n",
    "    the <code>recurrent_kernel</code> weights matrix.</li>\n",
    "<li><strong>bias_constraint</strong>: Constraint function applied to the bias vector.</li>\n",
    "<li><strong>dropout</strong>: Float between 0 and 1.\n",
    "    Fraction of the units to drop for\n",
    "    the linear transformation of the inputs.</li>\n",
    "<li><strong>recurrent_dropout</strong>: Float between 0 and 1.\n",
    "    Fraction of the units to drop for\n",
    "    the linear transformation of the recurrent state.</li>\n",
    "</ul>"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### GRU  "
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "Gated recurrent units are a gating mechanism in recurrent neural networks. \n",
    "\n",
    "Much similar to the LSTMs, they have fewer parameters than LSTM, as they lack an output gate.\n",
    "\n",
    "<img src=\"../imgs/gru.png\" />"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "collapsed": true
   },
   "source": [
    "```python\n",
    "keras.layers.recurrent.GRU(units, activation='tanh', recurrent_activation='hard_sigmoid', use_bias=True, \n",
    "                           kernel_initializer='glorot_uniform', recurrent_initializer='orthogonal', \n",
    "                           bias_initializer='zeros', kernel_regularizer=None, recurrent_regularizer=None, \n",
    "                           bias_regularizer=None, activity_regularizer=None, kernel_constraint=None, \n",
    "                           recurrent_constraint=None, bias_constraint=None, \n",
    "                           dropout=0.0, recurrent_dropout=0.0)\n",
    "```"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Your Turn! - Hands on Rnn"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {
    "collapsed": true
   },
   "outputs": [],
   "source": [
    "print('Build model...')\n",
    "model = Sequential()\n",
    "model.add(Embedding(max_features, 128, input_length=maxlen))\n",
    "\n",
    "# !!! Play with those! try and get better results!\n",
    "#model.add(SimpleRNN(128))  \n",
    "#model.add(GRU(128))  \n",
    "#model.add(LSTM(128))  \n",
    "\n",
    "model.add(Dropout(0.5))\n",
    "model.add(Dense(1))\n",
    "model.add(Activation('sigmoid'))\n",
    "\n",
    "# try using different optimizers and different optimizer configs\n",
    "model.compile(loss='binary_crossentropy', optimizer='adam')\n",
    "\n",
    "print(\"Train...\")\n",
    "model.fit(X_train, y_train, batch_size=batch_size, \n",
    "          epochs=4, validation_data=(X_test, y_test))\n",
    "score, acc = model.evaluate(X_test, y_test, batch_size=batch_size)\n",
    "print('Test score:', score)\n",
    "print('Test accuracy:', acc)"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "---"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "collapsed": true
   },
   "source": [
    "## Convolutional LSTM\n",
    "\n",
    "> This section demonstrates the use of a **Convolutional LSTM network**.\n",
    "\n",
    "> This network is used to predict the next frame of an artificially\n",
    "generated movie which contains moving squares.\n"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "#### Artificial Data Generation"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "Generate movies with `3` to `7` moving squares inside.\n",
    "\n",
    "The squares are of shape $1 \\times 1$ or $2 \\times 2$ pixels, which move linearly over time.\n",
    "\n",
    "For convenience we first create movies with bigger width and height (`80x80`) \n",
    "and at the end we select a $40 \\times 40$ window."
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {
    "collapsed": true
   },
   "outputs": [],
   "source": [
    "# Artificial Data Generation\n",
    "def generate_movies(n_samples=1200, n_frames=15):\n",
    "    row = 80\n",
    "    col = 80\n",
    "    noisy_movies = np.zeros((n_samples, n_frames, row, col, 1), dtype=np.float)\n",
    "    shifted_movies = np.zeros((n_samples, n_frames, row, col, 1),\n",
    "                              dtype=np.float)\n",
    "\n",
    "    for i in range(n_samples):\n",
    "        # Add 3 to 7 moving squares\n",
    "        n = np.random.randint(3, 8)\n",
    "\n",
    "        for j in range(n):\n",
    "            # Initial position\n",
    "            xstart = np.random.randint(20, 60)\n",
    "            ystart = np.random.randint(20, 60)\n",
    "            # Direction of motion\n",
    "            directionx = np.random.randint(0, 3) - 1\n",
    "            directiony = np.random.randint(0, 3) - 1\n",
    "\n",
    "            # Size of the square\n",
    "            w = np.random.randint(2, 4)\n",
    "\n",
    "            for t in range(n_frames):\n",
    "                x_shift = xstart + directionx * t\n",
    "                y_shift = ystart + directiony * t\n",
    "                noisy_movies[i, t, x_shift - w: x_shift + w,\n",
    "                             y_shift - w: y_shift + w, 0] += 1\n",
    "\n",
    "                # Make it more robust by adding noise.\n",
    "                # The idea is that if during inference,\n",
    "                # the value of the pixel is not exactly one,\n",
    "                # we need to train the network to be robust and still\n",
    "                # consider it as a pixel belonging to a square.\n",
    "                if np.random.randint(0, 2):\n",
    "                    noise_f = (-1)**np.random.randint(0, 2)\n",
    "                    noisy_movies[i, t,\n",
    "                                 x_shift - w - 1: x_shift + w + 1,\n",
    "                                 y_shift - w - 1: y_shift + w + 1,\n",
    "                                 0] += noise_f * 0.1\n",
    "\n",
    "                # Shift the ground truth by 1\n",
    "                x_shift = xstart + directionx * (t + 1)\n",
    "                y_shift = ystart + directiony * (t + 1)\n",
    "                shifted_movies[i, t, x_shift - w: x_shift + w,\n",
    "                               y_shift - w: y_shift + w, 0] += 1\n",
    "\n",
    "    # Cut to a 40x40 window\n",
    "    noisy_movies = noisy_movies[::, ::, 20:60, 20:60, ::]\n",
    "    shifted_movies = shifted_movies[::, ::, 20:60, 20:60, ::]\n",
    "    noisy_movies[noisy_movies >= 1] = 1\n",
    "    shifted_movies[shifted_movies >= 1] = 1\n",
    "    return noisy_movies, shifted_movies"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Model"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Using TensorFlow backend.\n"
     ]
    }
   ],
   "source": [
    "from keras.models import Sequential\n",
    "from keras.layers.convolutional import Conv3D\n",
    "from keras.layers.convolutional_recurrent import ConvLSTM2D\n",
    "from keras.layers.normalization import BatchNormalization\n",
    "import numpy as np\n",
    "from matplotlib import pyplot as plt\n",
    "\n",
    "%matplotlib inline"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "We create a layer which take as input movies of shape `(n_frames, width, height, channels)` and returns a movie\n",
    "of identical shape."
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "metadata": {
    "collapsed": true
   },
   "outputs": [],
   "source": [
    "seq = Sequential()\n",
    "seq.add(ConvLSTM2D(filters=40, kernel_size=(3, 3),\n",
    "                   input_shape=(None, 40, 40, 1),\n",
    "                   padding='same', return_sequences=True))\n",
    "seq.add(BatchNormalization())\n",
    "\n",
    "seq.add(ConvLSTM2D(filters=40, kernel_size=(3, 3),\n",
    "                   padding='same', return_sequences=True))\n",
    "seq.add(BatchNormalization())\n",
    "\n",
    "seq.add(ConvLSTM2D(filters=40, kernel_size=(3, 3),\n",
    "                   padding='same', return_sequences=True))\n",
    "seq.add(BatchNormalization())\n",
    "\n",
    "seq.add(ConvLSTM2D(filters=40, kernel_size=(3, 3),\n",
    "                   padding='same', return_sequences=True))\n",
    "seq.add(BatchNormalization())\n",
    "\n",
    "seq.add(Conv3D(filters=1, kernel_size=(3, 3, 3),\n",
    "               activation='sigmoid',\n",
    "               padding='same', data_format='channels_last'))\n",
    "seq.compile(loss='binary_crossentropy', optimizer='adadelta')"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Train the Network\n",
    "\n",
    "#### Beware: This takes time (~3 mins per epoch on my hardware)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Train on 950 samples, validate on 50 samples\n",
      "Epoch 1/50\n",
      "950/950 [==============================] - 180s - loss: 0.3293 - val_loss: 0.6113\n",
      "Epoch 2/50\n",
      "950/950 [==============================] - 181s - loss: 0.0629 - val_loss: 0.4206\n",
      "Epoch 3/50\n",
      "950/950 [==============================] - 180s - loss: 0.0187 - val_loss: 0.2585\n",
      "Epoch 4/50\n",
      "950/950 [==============================] - 180s - loss: 0.0062 - val_loss: 0.2087\n",
      "Epoch 5/50\n",
      "950/950 [==============================] - 179s - loss: 0.0134 - val_loss: 0.1884\n",
      "Epoch 6/50\n",
      "950/950 [==============================] - 180s - loss: 0.0024 - val_loss: 0.1025\n",
      "Epoch 7/50\n",
      "950/950 [==============================] - 179s - loss: 0.0013 - val_loss: 0.0079\n",
      "Epoch 8/50\n",
      "950/950 [==============================] - 180s - loss: 8.1664e-04 - val_loss: 7.7649e-04\n",
      "Epoch 9/50\n",
      "950/950 [==============================] - 180s - loss: 5.9629e-04 - val_loss: 4.9810e-04\n",
      "Epoch 10/50\n",
      "950/950 [==============================] - 180s - loss: 4.8772e-04 - val_loss: 4.5704e-04\n",
      "Epoch 11/50\n",
      "950/950 [==============================] - 179s - loss: 4.1252e-04 - val_loss: 3.7326e-04\n",
      "Epoch 12/50\n",
      "950/950 [==============================] - 180s - loss: 3.6413e-04 - val_loss: 3.3256e-04\n",
      "Epoch 13/50\n",
      "950/950 [==============================] - 179s - loss: 3.2918e-04 - val_loss: 2.8421e-04\n",
      "Epoch 14/50\n",
      "950/950 [==============================] - 179s - loss: 2.9520e-04 - val_loss: 2.8827e-04\n",
      "Epoch 15/50\n",
      "950/950 [==============================] - 179s - loss: 2.7647e-04 - val_loss: 2.5144e-04\n",
      "Epoch 16/50\n",
      "950/950 [==============================] - 181s - loss: 2.5863e-04 - val_loss: 2.5015e-04\n",
      "Epoch 17/50\n",
      "950/950 [==============================] - 180s - loss: 2.4067e-04 - val_loss: 2.2645e-04\n",
      "Epoch 18/50\n",
      "950/950 [==============================] - 180s - loss: 2.2378e-04 - val_loss: 2.1206e-04\n",
      "Epoch 19/50\n",
      "950/950 [==============================] - 179s - loss: 2.1416e-04 - val_loss: 2.0406e-04\n",
      "Epoch 20/50\n",
      "950/950 [==============================] - 179s - loss: 2.0244e-04 - val_loss: 1.9820e-04\n",
      "Epoch 21/50\n",
      " 20/950 [..............................] - ETA: 170s - loss: 1.8054e-04"
     ]
    },
    {
     "ename": "KeyboardInterrupt",
     "evalue": "",
     "output_type": "error",
     "traceback": [
      "\u001b[0;31m---------------------------------------------------------------------------\u001b[0m",
      "\u001b[0;31mKeyboardInterrupt\u001b[0m                         Traceback (most recent call last)",
      "\u001b[0;32m<ipython-input-4-5547645715ec>\u001b[0m in \u001b[0;36m<module>\u001b[0;34m()\u001b[0m\n\u001b[1;32m      2\u001b[0m \u001b[0mnoisy_movies\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mshifted_movies\u001b[0m \u001b[0;34m=\u001b[0m \u001b[0mgenerate_movies\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mn_samples\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0;36m1200\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m      3\u001b[0m seq.fit(noisy_movies[:1000], shifted_movies[:1000], batch_size=10,\n\u001b[0;32m----> 4\u001b[0;31m         epochs=50, validation_split=0.05)\n\u001b[0m",
      "\u001b[0;32m/home/valerio/anaconda3/lib/python3.5/site-packages/keras/models.py\u001b[0m in \u001b[0;36mfit\u001b[0;34m(self, x, y, batch_size, epochs, verbose, callbacks, validation_split, validation_data, shuffle, class_weight, sample_weight, initial_epoch, **kwargs)\u001b[0m\n\u001b[1;32m    854\u001b[0m                               \u001b[0mclass_weight\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0mclass_weight\u001b[0m\u001b[0;34m,\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m    855\u001b[0m                               \u001b[0msample_weight\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0msample_weight\u001b[0m\u001b[0;34m,\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0;32m--> 856\u001b[0;31m                               initial_epoch=initial_epoch)\n\u001b[0m\u001b[1;32m    857\u001b[0m \u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m    858\u001b[0m     def evaluate(self, x, y, batch_size=32, verbose=1,\n",
      "\u001b[0;32m/home/valerio/anaconda3/lib/python3.5/site-packages/keras/engine/training.py\u001b[0m in \u001b[0;36mfit\u001b[0;34m(self, x, y, batch_size, epochs, verbose, callbacks, validation_split, validation_data, shuffle, class_weight, sample_weight, initial_epoch, **kwargs)\u001b[0m\n\u001b[1;32m   1496\u001b[0m                               \u001b[0mval_f\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0mval_f\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mval_ins\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0mval_ins\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mshuffle\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0mshuffle\u001b[0m\u001b[0;34m,\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m   1497\u001b[0m                               \u001b[0mcallback_metrics\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0mcallback_metrics\u001b[0m\u001b[0;34m,\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0;32m-> 1498\u001b[0;31m                               initial_epoch=initial_epoch)\n\u001b[0m\u001b[1;32m   1499\u001b[0m \u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m   1500\u001b[0m     \u001b[0;32mdef\u001b[0m \u001b[0mevaluate\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mself\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mx\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0my\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mbatch_size\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0;36m32\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mverbose\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0;36m1\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0msample_weight\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0;32mNone\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n",
      "\u001b[0;32m/home/valerio/anaconda3/lib/python3.5/site-packages/keras/engine/training.py\u001b[0m in \u001b[0;36m_fit_loop\u001b[0;34m(self, f, ins, out_labels, batch_size, epochs, verbose, callbacks, val_f, val_ins, shuffle, callback_metrics, initial_epoch)\u001b[0m\n\u001b[1;32m   1150\u001b[0m                 \u001b[0mbatch_logs\u001b[0m\u001b[0;34m[\u001b[0m\u001b[0;34m'size'\u001b[0m\u001b[0;34m]\u001b[0m \u001b[0;34m=\u001b[0m \u001b[0mlen\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mbatch_ids\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m   1151\u001b[0m                 \u001b[0mcallbacks\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mon_batch_begin\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mbatch_index\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mbatch_logs\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0;32m-> 1152\u001b[0;31m                 \u001b[0mouts\u001b[0m \u001b[0;34m=\u001b[0m \u001b[0mf\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mins_batch\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0m\u001b[1;32m   1153\u001b[0m                 \u001b[0;32mif\u001b[0m \u001b[0;32mnot\u001b[0m \u001b[0misinstance\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mouts\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mlist\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m   1154\u001b[0m                     \u001b[0mouts\u001b[0m \u001b[0;34m=\u001b[0m \u001b[0;34m[\u001b[0m\u001b[0mouts\u001b[0m\u001b[0;34m]\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n",
      "\u001b[0;32m/home/valerio/anaconda3/lib/python3.5/site-packages/keras/backend/tensorflow_backend.py\u001b[0m in \u001b[0;36m__call__\u001b[0;34m(self, inputs)\u001b[0m\n\u001b[1;32m   2227\u001b[0m         \u001b[0msession\u001b[0m \u001b[0;34m=\u001b[0m \u001b[0mget_session\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m   2228\u001b[0m         updated = session.run(self.outputs + [self.updates_op],\n\u001b[0;32m-> 2229\u001b[0;31m                               feed_dict=feed_dict)\n\u001b[0m\u001b[1;32m   2230\u001b[0m         \u001b[0;32mreturn\u001b[0m \u001b[0mupdated\u001b[0m\u001b[0;34m[\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0mlen\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mself\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0moutputs\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m]\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m   2231\u001b[0m \u001b[0;34m\u001b[0m\u001b[0m\n",
      "\u001b[0;32m/home/valerio/anaconda3/lib/python3.5/site-packages/tensorflow/python/client/session.py\u001b[0m in \u001b[0;36mrun\u001b[0;34m(self, fetches, feed_dict, options, run_metadata)\u001b[0m\n\u001b[1;32m    776\u001b[0m     \u001b[0;32mtry\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m    777\u001b[0m       result = self._run(None, fetches, feed_dict, options_ptr,\n\u001b[0;32m--> 778\u001b[0;31m                          run_metadata_ptr)\n\u001b[0m\u001b[1;32m    779\u001b[0m       \u001b[0;32mif\u001b[0m \u001b[0mrun_metadata\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m    780\u001b[0m         \u001b[0mproto_data\u001b[0m \u001b[0;34m=\u001b[0m \u001b[0mtf_session\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mTF_GetBuffer\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mrun_metadata_ptr\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n",
      "\u001b[0;32m/home/valerio/anaconda3/lib/python3.5/site-packages/tensorflow/python/client/session.py\u001b[0m in \u001b[0;36m_run\u001b[0;34m(self, handle, fetches, feed_dict, options, run_metadata)\u001b[0m\n\u001b[1;32m    980\u001b[0m     \u001b[0;32mif\u001b[0m \u001b[0mfinal_fetches\u001b[0m \u001b[0;32mor\u001b[0m \u001b[0mfinal_targets\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m    981\u001b[0m       results = self._do_run(handle, final_targets, final_fetches,\n\u001b[0;32m--> 982\u001b[0;31m                              feed_dict_string, options, run_metadata)\n\u001b[0m\u001b[1;32m    983\u001b[0m     \u001b[0;32melse\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m    984\u001b[0m       \u001b[0mresults\u001b[0m \u001b[0;34m=\u001b[0m \u001b[0;34m[\u001b[0m\u001b[0;34m]\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n",
      "\u001b[0;32m/home/valerio/anaconda3/lib/python3.5/site-packages/tensorflow/python/client/session.py\u001b[0m in \u001b[0;36m_do_run\u001b[0;34m(self, handle, target_list, fetch_list, feed_dict, options, run_metadata)\u001b[0m\n\u001b[1;32m   1030\u001b[0m     \u001b[0;32mif\u001b[0m \u001b[0mhandle\u001b[0m \u001b[0;32mis\u001b[0m \u001b[0;32mNone\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m   1031\u001b[0m       return self._do_call(_run_fn, self._session, feed_dict, fetch_list,\n\u001b[0;32m-> 1032\u001b[0;31m                            target_list, options, run_metadata)\n\u001b[0m\u001b[1;32m   1033\u001b[0m     \u001b[0;32melse\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m   1034\u001b[0m       return self._do_call(_prun_fn, self._session, handle, feed_dict,\n",
      "\u001b[0;32m/home/valerio/anaconda3/lib/python3.5/site-packages/tensorflow/python/client/session.py\u001b[0m in \u001b[0;36m_do_call\u001b[0;34m(self, fn, *args)\u001b[0m\n\u001b[1;32m   1037\u001b[0m   \u001b[0;32mdef\u001b[0m \u001b[0m_do_call\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mself\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mfn\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0;34m*\u001b[0m\u001b[0margs\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m   1038\u001b[0m     \u001b[0;32mtry\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0;32m-> 1039\u001b[0;31m       \u001b[0;32mreturn\u001b[0m \u001b[0mfn\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0;34m*\u001b[0m\u001b[0margs\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0m\u001b[1;32m   1040\u001b[0m     \u001b[0;32mexcept\u001b[0m \u001b[0merrors\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mOpError\u001b[0m \u001b[0;32mas\u001b[0m \u001b[0me\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m   1041\u001b[0m       \u001b[0mmessage\u001b[0m \u001b[0;34m=\u001b[0m \u001b[0mcompat\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mas_text\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0me\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mmessage\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n",
      "\u001b[0;32m/home/valerio/anaconda3/lib/python3.5/site-packages/tensorflow/python/client/session.py\u001b[0m in \u001b[0;36m_run_fn\u001b[0;34m(session, feed_dict, fetch_list, target_list, options, run_metadata)\u001b[0m\n\u001b[1;32m   1019\u001b[0m         return tf_session.TF_Run(session, options,\n\u001b[1;32m   1020\u001b[0m                                  \u001b[0mfeed_dict\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mfetch_list\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mtarget_list\u001b[0m\u001b[0;34m,\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0;32m-> 1021\u001b[0;31m                                  status, run_metadata)\n\u001b[0m\u001b[1;32m   1022\u001b[0m \u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m   1023\u001b[0m     \u001b[0;32mdef\u001b[0m \u001b[0m_prun_fn\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0msession\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mhandle\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mfeed_dict\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mfetch_list\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m:\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n",
      "\u001b[0;31mKeyboardInterrupt\u001b[0m: "
     ]
    }
   ],
   "source": [
    "# Train the network\n",
    "noisy_movies, shifted_movies = generate_movies(n_samples=1200)\n",
    "seq.fit(noisy_movies[:1000], shifted_movies[:1000], batch_size=10,\n",
    "        epochs=20, validation_split=0.05)"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Test the Network"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "metadata": {
    "collapsed": true
   },
   "outputs": [],
   "source": [
    "# Testing the network on one movie\n",
    "# feed it with the first 7 positions and then\n",
    "# predict the new positions\n",
    "which = 1004\n",
    "track = noisy_movies[which][:7, ::, ::, ::]\n",
    "\n",
    "for j in range(16):\n",
    "    new_pos = seq.predict(track[np.newaxis, ::, ::, ::, ::])\n",
    "    new = new_pos[::, -1, ::, ::, ::]\n",
    "    track = np.concatenate((track, new), axis=0)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 6,
   "metadata": {
    "scrolled": false
   },
   "outputs": [
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nIABhCgAAIMD/B5e1KlbuCk5JAAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f4256032908>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f4255f11390>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nDAxTkiRJGRimJEmSMjBMSZIkZfD/Aa42VyM8JXJiAAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f415ab26ac8>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f415aa46668>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz\nAAALEgAACxIB0t1+/AAAIABJREFUeJzt3XlwXed53/Hvg50AFwAkSILgTtHWFpmSWcmuVUXyJsVd\nHLmtp+40Vht3lLSpJ2k7bTPtTGz3r0wny2QyaaZK4lrOpG49iZ14MnYUyZajyJZlURIlUaQsUtwB\nkCAJgABBYn/7By4hgLhYiHMXgvh+ZjC8OOfc+z4Hy8MfznnPuZFSQpIkSYtTUe4CJEmSljLDlCRJ\nUgaGKUmSpAwMU5IkSRkYpiRJkjIwTEmSJGVgmJIkScrAMCVJkpSBYUqSJCmDqixPjohHgN8BKoE/\nTCn9+lzb11Q3pLraxixDSlpi+gc6zqeUWspdRz7X08NqojbV0VCy2iSVXz89C+pfiw5TEVEJ/B7w\nMeA08FJEfCuldHC259TVNnLfXb+42CElLUHPvPBrJ8pdQz7X28PqaOC++EgpS5RUZs+kP11Q/8py\nmu9e4EhK6WhKaRj4v8AnM7yeJJWSPUxSQWQJU23AqSmfn84tmyYiHo+IfRGxb2RkIMNwklRQ8/aw\naf2LoZIWJ2npKPoE9JTSEymlvSmlvdXVzjeQtHRM61/UlrscSTeoLGGqHdgy5fPNuWWStBTYwyQV\nRJYw9RKwOyJ2REQN8M+AbxWmLEkqOnuYpIJY9NV8KaXRiPh3wFNMXFb85ZTSmwWrTJKKyB4mqVAy\n3WcqpfRt4NsFqqUoOrpe5eA73+T2XY+yaf3dRRvnzSPfoPPcfj50979nRV1T0cZZrCuDPfzg1d+m\ntWUPd9zyqXKXI90QlkIPu1l0py5e4Tl2cBu74o5yl7Mo76Q3OcYh7uEBmmN9ucvRDSRTmCqmZ174\nNQA++sH/XpTXf/6V3wLg/nv+Q1Fefz773vwyvX3Hi7Z/N4Lui8d45eD/ZsfmB9m15cPlLkcqi4HU\nTztH6eEcVxhgjFEqqaKelTSyjo1sZXXceH+AlVtHOs5B9nE7e9kU22/aMXVzuGHDVKGsb76NNas2\nU1u9qtyllFVtzWo+uOfzVFXWlbsUaVlIKXGMQxxl4h6gq2hkA1uopoYxRumnl1O8w0kO8960hy1x\nS5krlrRYN32Yqqqqo6rKAFFRUUnDihvyHT2km9LVIFXLCn6K+2iMdTO2GU6DnOQwo4yUoUJJhbKk\nwtTUeT87Nz/EkZNP033xKGNjwzTUr2fnlodoaXrvtOdcO2fq6qmnq66eTgSmzSfq6j5E14U36bvU\nzuBwHwANK9bR2nI3WzbeS8TiLoS8ug/5xm9cvZ29d/w88O5pyA/c9W85evpZuroPMTTcx/a2B9i1\n5cMMDffRfvZlLlw8wpXBHkZGr1BdVU/T6u3s2PzTrKxfn3fcfHOmxsaGOXnmR5w9f4DLgxcIgpX1\n69nS+gE2rrsr735c6D3CqTM/4mJ/O6Njg9RUN7CqYRNbNt7H2sZdk3PIAI6d/j7HTn9/8rn33P6v\naF6zA4Dx8VFOdv6QznOvc2Woh4gKVtVvYMvGD7Bh3Z2z7sP2tgc4eup7dF88xsjoZe65/V/yzsmn\nuXipnQ/d/St5562d6PgBh088xe5tH2fbpvvn/D5JWVxOlzjGIYIK7uZ+VsaavNvVRB238FOMp/Fp\ny99ML9HJCf4uj3CeM3RwjMv0s5pm9saDwMSRr3aO0sFxBugjAStZzSa208ZOImLy9a6kAX7Ad2hl\nG3fE35lRx770fXo5z0fjn0wumzrHaT1tHOEAF7nAOOOspolbuDNvQBxKg7zDAc7TySgj1LOKreym\njvoFf/2u1gNwkH0cTPsm132In2FFNEybvzTMRCgdoI9qark/PjHvHK3n08RUufvjEwsec6qz6TQn\n+AmX6KOCCtaygd28j7pYseD91M1jSYWpqwaHevnxG0+woq6JjS3vY3T0CmfPH+C1t/4P99z+GM1r\nds763BW1jezY/CCnOn8EwJbWD0yuW9XQOvn4yImniQhWr9xMS80qRseG6Ll4lLePf5u+S+3cufsf\nL6r2qqo6dmx+kM5z+xkc6mXH5gen1DY9AIyPj/Hywa8wOnqFtWt2UVlZO7lNT98Jjnc8T9Pq7axv\nvp3KyhouD16gq/sg53t+wt47/zWrGjbOW8/I6BVeOfgV+gc6WdXQyqb190BKXOg9woHDf8qly13c\nsvWj057zzqnvcez096msqKGl+TbqalczNNzPxf5TnDn/Gmsbd9HSfBsAnef207h6O02rt0/Zz8bc\n/o3yyqGv0tt3nPoV69iy4V7Gxkfo6n6TNw5/nf7Lndyy9WMzar4y2M1LbzxB/Yq1bGy5i/HxEaoq\na2nbeC8Xj3yD9q6XZ9QM0H52HxVRRWtL8S5EkAA6OU4isZHNswapqSpm+ePsbV6jl/OsYyNr2Ujw\nbkB6kx9zhlPUsoJNTPxxco4O3uJVejnPndxXkH3pp4cTvM0amtnEdga5QheneYXnuC99jIZ4dwrF\ncBpiH89yhQEaWUsj6xhikLd4hWY2LHjMTWynmhrO0UELm1jJu1/DKqqnbXuSw3RzlnW00sT6RR/l\nu54xT3OU83Swjk000cJFujnLafq5yAfSR6mIykXVoKVrSYapnr7j7Nz8EDu3PDS5bOO6n+LVQ3/M\niY4fzB2m6prYteXDk0dNZpsYvee2f0F9XfO0ZSmNc/CdP6fz3H62bLyXNau25H3uXKqrVrBry4fp\n6TvO4FDvnBOzh0f6WVnfwt47fp7Kyppp65rX7OCBvf+Zqsrpd2XuHzjDvgN/yJGTf83dt3123nre\nPv4d+gcmQsv2tr83uXxsfITX3/oax9v/lg1r75gMmhd6j3Ds9PdZUdvE++/4HHW1q6e93uDQRWBi\nrlpVZR2d5/bTtHp73v080flDevuOs7ZxN++79Z9PNqCdWx7kx288wfH2v2Vd03tpXLV12vN6+0+y\nve3vzQhaDfUtHD7+V3R0vcLOLQ9Na2jdF49xefACG9fdRY134leR9XIBgCayXfHVTw/38dEZR0XO\npJOc4RSraOT9PEhVTLTyW9Kd7ONvOMMp1qVWNsbWfC97Xc5zZsaE7NPpKG/xCqc4zK3cM7n8HQ5w\nhQG2cAvvjT2Ty7ekXbzEswsec1Nsh8RksJlrMng3XezlocyT+K9nzAuc4V4+Mi0ov5Fe5CynOEcH\nG7j+/xu0tBX97WSKoa62kR2bf3rasrWNu6mrWUPfpcLcwPjaIAUQUcGWjRNHsi70HinIOPPZve2R\nGUEKoKZ65YwgBbCqYSNNa3bQc/E44+Njc7728Mhlzpx7ndUNm6YFKYDKimpu2fZxIHHm/OuTy0+d\n+VGurodnBCmAutr5/wq/qqPrFSB4z/ZHpgWfmuqV7Gib+P62n315xvNqqleyc/NDM5ZXVlSzqeVu\nhkcuca77rWnr2s9OHLJv27B3wfVJizXMIAC1zDzlcyUN8E56c9rHyXQ47+ts470zghRAB8cBuIU7\nJ4MUQGVUsZuJ0+PtHMu6GwCsYe2MYLGJ7QTBRXoml42ncTo5SSVV7GL6abXV0cxGsge7fNrYUfKr\nIbdwy4wjjm25o4MX6S5pLboxLMkjU6vqN+ads1Rbu4aL/afyPOP6DY9c5kTH81zoPcyVwR7Gxoen\nrR8a7i/IOHOpiCpW1s9+aPx8z084ffYl+i51MDJ6mXTNvIuR0cvU1sx+FWPfpXYS40DwzqnvzVh/\n9fUGrpybXHax/zQQrG3cfX07c43RsSGuDHZTW7M678T4q0cX+wc6Z6xbWb+Bior8P7ptG/8OJzp/\nSPvZfWxYO9HQh0cGONd9iIYVLdNON0rlcIUBjnFo2rI66tnKzN+p1cz8ow6gn14g/5GvRloIYnKb\nrFYzM6hURAU1qY5R3u2Ll+lnnDEaWUdVVM94ThMtdHKiIDVNtWaWr1Ex5fuaXJ0T5sUEy9OSDFOz\nXZ03EbBS5tcfGb3CS2/8L64M9bB6ZRutLe+jqmoFERWMjg5y6syPGE+jmceZT011w7RJpFOd7HyB\nt49/h6rKFaxt3EVdzRoqKica2Lnut7h0+Qzj43PXODJ6GYC+gXb6BmY/ojc29m7DHB0bpLqqjsrK\nmc3yeoyO5v5yr16Zd31NzcrJ8a41V0Csr2tmbeMuLvS+w+XBburrmuk8t5/xNOpRKZVMDXUM0M8Q\nV2asa471fJSJid7jaZzv8Y1ZX6eW/L1ulBGqqck716oiKqhONQwztMjqp7t2vtBVQZCm9NurIaJm\nljeErpllX7Iq1uvOJd/X5Op8tlSA/4O09CzJMFVsHV0vc2WoJ+/NJnv7T06e6iq6WYLUeBrj6Kln\nqaleyX13/ZsZ4WKhR+euhtKtrR/kPdt/ZmHPqaxjZPQKY2MjmQLV1bGHRi7lXT88fGlyvOu1ecO9\nXOg9QvvZfeze9vEpE8/3zP9kqQAaWUsP5+iha/L0TyFVUc0Iw4yn8RmBajyNM8LwtP/w5/uPvhBH\nU66ON1uIu3rqs1QWss+zBUXpei3JOVOFEMSM02JXXR6cOOe9oXnm5bS9fccLNj4waw1zGRm5zOjY\nIGtWbZ0RpEbHhvKeGstnzco2IOjtW/ih9zWrNgOJC73553hMNXlULc1sZlWVtayobWZouJ/LVy7M\nWN/dNzHfY+oVlgu1ruk91NWsofPcq1zoPcLlwQtsWHcn1VVesqzSaM3NKTpLOwOpr+Cvv4qJK2J7\nOTdjXS/nSaTJbeDdoDPI5Rnbj6YRLpP/j5rrUc8qKqikn15G08xw1pOn1rlkPdJTzcRc03xHBy+n\nS3kDpEeXtFjLNkxVV9UzMnKZsbGZv1BXL92/+h/6VX0DnRxr/9vCjF89cX796tVv16OmuoGKimr6\nBzoYHXv3r8Dx8THePvadydN387/OSjauu4u+gQ6Onv5+3mB3ebCbK4PvTjK9OgH/8ImnGBya+Z/E\n1GXVVbl9HM6/jxPvlZg4fOKpaWMPjwxM3peqbf09eZ87l4gK2jbsZXhkgIPv/PnE63iKTyVUHyvZ\nwW0kxnmV5+lN5/Nul+UyfoAjHGBsypSDsTTKEd7IbfPuEbGqqKaeVVzkApemhLuUEm/zGuPMfbHK\nQlREBa1sZYxR3mH6+0X3pW7OcPK6Xu9qGMoXABeinlVUUsU5OhhO7x4VG0tj/IT9RRlTy9eyPc3X\nvGYnfQPtvHroqzSt3k5UVLKqfiMtzbfS2rKHEx0/4O3j36Gn7xj1dWu5PHiB8z1vs775Ns5eOFCQ\n8bsuvMlrP/ka65reQ0VFFStqGxd0Kiqigq0bP8Dxjr/lR6/9Hi1Nt5LSGN19xxgdvULT6h309C3s\nSp5bd/x9rgxe4Oip73Hm3GsTR7uqVzI00s/A5XP0DbRz5+5/OnkTzLWNt7Cj7ac51v43vPDa79LS\ndCt1tWsYHrlEb99J1qzaPHlT0IYV66itWc2Z828QUUFdLqS2tuxhRW0j2zZ9iAu9hznX8xY/eu1/\nsq5pN2NjE/eZGh4ZYNum+2lcvW1RX99N69/P0dPfZ2i4j5X1G2bcXkEqtokwNfGWMvv4PqtSE2to\noooaRhlhkAG66QKgkZk3v5zLxtjKudTBWU7zAn9NS9pEEJyjgysMsIHNtF5zW4RtvIdDvMw+nmVD\n2kwFlXTTRSKxkjVc4vr/sLvWLu6kmy5OcYT+1DN5n6mznGItGznPwo6aw8RVhBVUcpLDjKThyblR\nW7kl7wT3a1VEBVvTbo5xiBd5hpbURiLRzVlqqcs7Hy3rmFq+lm2Y2rH5pxkZG+R8z0+42H6KxDit\nLXtoab6V2prVvP+Oz3Hk5NP09p3kQu8RGlas49Yd/4DmNTsLEqba1r+fwaFezp4/wImO50lpnMbV\n2xc8r2fn1g9TXV1PR9crtJ/dR1VVHc1rdrFr60c4mufKvNlUVdXx/jt+nvazL3Pm/Ot0dR9kfHyU\nmuqV1Nc1857tj9C8Zte05+za+hHWrNrCqc4fcb7nbcbGh6mpbmB1Q9u0+iMquOu9n+HIib/m7IU3\ncxPZE42rtrGitpGKiiruvv0xTnb8kDPn3+BU54tEVLCyYSPv2f4zs959fSFqa1ayrvE9nOs55FEp\nlUVEsIs72Ji2cpp36OEcZzg17Y2O29hJK9sWdWn/ndxHIy10cHzyNggNrOK97GEzu2Zs3xY7IE3c\n5LKDE1RTTQub2MWdvM4LmfcXoCZq2Zse4ggHOE8HffRQzypu5R7qqL+uMFUdNdyVPsgxDtLJccZy\nR89a2brguU47uZ1KKmnnGO0cpYY6NrKFndzOC/x1UcbU8hQpz3yWYlm9si3dd9cvlmw8vWvgyjle\n2P+7tK3fy227/lG5yym6lMb54au/w9DIJR54/3/y/RnL6JkXfu3llNKST7SrozndFx8pdxmSSuiZ\n9KcL6l/Lds7UcnN1kndtnhtt3oy6LhzkylAPrS17DFKSpKJatqf5lov+gTOcOf967i7mwfrce+bd\nrI63P8fI6BXaz75MZUUNO665s7skSYVmmLrJ9Q90curMixNzvnb+wznvqH4zOHLyGSIqaVjRwu5t\nH5+c9C5JUrEYpm5ym9bfnbsFwfLw0Q/+93KXIElaZpwzJUmSlIFhSpIkKQPDlCRJUgaGKUmSpAwy\nTUCPiONAPzAGjN4MN+bTzempb3y13CXk9fCnPlvuEpY1e5iWgqc68r+XYLk9vGlh79ixHBTiar6H\nUprlXTwl6cZnD5OUiaf5JEmSMsgaphLwTES8HBGP59sgIh6PiH0RsW9kZCDjcJJUUHP2sGn9i6Ey\nlCdpKch6mu/+lFJ7RKwHno6It1JKz03dIKX0BPAETLzRccbxJKmQ5uxh0/pXNNu/JOWV6chUSqk9\n928X8E3g3kIUJUmlYA+TVAiLDlMR0RARq64+Bj4OHChUYZJUTPYwSYWS5TTfBuCbEXH1df5PSumv\nClKVJBWfPUxSQSw6TKWUjgLvK2AtklQy9jBJheKtESRJkjIwTEmSJGVgmJIkScrAMCVJkpSBYUqS\nJCkDw5QkSVIGhilJkqQMDFOSJEkZGKYkSZIyMExJkiRlYJiSJEnKwDAlSZKUgWFKkiQpA8OUJElS\nBoYpSZKkDAxTkiRJGRimJEmSMjBMSZIkZWCYkiRJysAwJUmSlIFhSpIkKQPDlCRJUgbzhqmI+HJE\ndEXEgSnLmiPi6Yg4nPu3qbhlStLi2MMkFdtCjkx9BXjkmmW/Cnw3pbQb+G7uc0m6EX0Fe5ikIpo3\nTKWUngO6r1n8SeDJ3OMngZ8tcF2SVBD2MEnFttg5UxtSSp25x2eADQWqR5JKwR4mqWAyT0BPKSUg\nzbY+Ih6PiH0RsW9kZCDrcJJUUHP1sGn9i6ESVyZpqVhsmDobEa0AuX+7ZtswpfRESmlvSmlvdXXD\nIoeTpIJaUA+b1r+oLWmBkpaOxYapbwGP5R4/BvxFYcqRpJKwh0kqmKr5NoiIrwEPAusi4jTwBeDX\nga9HxOeAE8Cni1mklNXDn/psuUvIq6r92nnRS9doW3O5S8jLHqal7uFNe8pdguYxb5hKKX1mllUf\nKXAtklRw9jBJxeYd0CVJkjIwTEmSJGVgmJIkScrAMCVJkpTBvBPQJZXeF577ZrlLyOtLDzxa7hIk\n3eCe6thf7hLyKuZVkR6ZkiRJysAwJUmSlIFhSpIkKQPDlCRJUgaGKUmSpAwMU5IkSRkYpiRJkjIw\nTEmSJGVgmJIkScrAMCVJkpSBYUqSJCkDw5QkSVIGhilJkqQMDFOSJEkZGKYkSZIyMExJkiRlYJiS\nJEnKwDAlSZKUwbxhKiK+HBFdEXFgyrIvRkR7ROzPfXyiuGVK0uLYwyQV20KOTH0FeCTP8t9OKe3J\nfXy7sGVJUsF8BXuYpCKaN0yllJ4DuktQiyQVnD1MUrFlmTP1+Yh4PXcIvWm2jSLi8YjYFxH7RkYG\nMgwnSQU1bw+b1r8YKnV9kpaIxYap3wd2AnuATuA3Z9swpfRESmlvSmlvdXXDIoeTpIJaUA+b1r+o\nLWV9kpaQRYWplNLZlNJYSmkc+APg3sKWJUnFYw+TVEiLClMR0Trl00eBA7NtK0k3GnuYpEKqmm+D\niPga8CCwLiJOA18AHoyIPUACjgO/UMQaJWnR7GGSim3eMJVS+kyexX9UhFokqeDsYZKKzTugS5Ik\nZWCYkiRJysAwJUmSlIFhSpIkKQPDlCRJUgaGKUmSpAwMU5IkSRkYpiRJkjIwTEmSJGVgmJIkScpg\n3reTWQ6e+sZXy11CXg9/6rPlLkFl8qUHHi13CVoinurYX+4S8np4055yl6AyWY7fe49MSZIkZWCY\nkiRJysAwJUmSlIFhSpIkKQPDlCRJUgaGKUmSpAy8NYJURqNtzeUuQZKUkUemJEmSMjBMSZIkZWCY\nkiRJysAwJUmSlIFhSpIkKYN5w1REbImIZyPiYES8GRG/nFveHBFPR8Th3L9NxS9XkhbO/iWpFBZy\nZGoU+I8ppduBDwC/FBG3A78KfDeltBv4bu5zSbqR2L8kFd28YSql1JlSeiX3uB84BLQBnwSezG32\nJPCzxSpSkhbD/iWpFK7rpp0RsR24G3gR2JBS6sytOgNsmOU5jwOPA9TVrFlsnZKUSeb+RX3xi5S0\nJC14AnpErAT+DPiVlFLf1HUppQSkfM9LKT2RUtqbUtpbXd2QqVhJWoyC9C9qS1CppKVoQWEqIqqZ\naER/klL6Rm7x2Yhoza1vBbqKU6IkLZ79S1KxLeRqvgD+CDiUUvqtKau+BTyWe/wY8BeFL0+SFs/+\nJakUFjJn6kPAzwFvRMT+3LL/Cvw68PWI+BxwAvh0cUqUpEWzf0kqunnDVErpeSBmWf2RwpYjSYVj\n/5JUCt4BXZIkKQPDlCRJUgaGKUmSpAwMU5IkSRkYpiRJkjIwTEmSJGVgmJIkScrAMCVJkpSBYUqS\nJCkDw5QkSVIGhilJkqQMDFOSJEkZGKYkSZIyMExJkiRlYJiSJEnKwDAlSZKUgWFKkiQpA8OUJElS\nBoYpSZKkDAxTkiRJGRimJEmSMjBMSZIkZTBvmIqILRHxbEQcjIg3I+KXc8u/GBHtEbE/9/GJ4pcr\nSQtn/5JUClUL2GYU+I8ppVciYhXwckQ8nVv32yml3yheeZKUif1LUtHNG6ZSSp1AZ+5xf0QcAtqK\nXZgkZWX/klQK1zVnKiK2A3cDL+YWfT4iXo+IL0dEU4Frk6SCsX9JKpYFh6mIWAn8GfArKaU+4PeB\nncAeJv7y+81Znvd4ROyLiH0jIwMFKFmSrk9B+hdDJatX0tKyoDAVEdVMNKI/SSl9AyCldDalNJZS\nGgf+ALg333NTSk+klPamlPZWVzcUqm5JWpCC9S9qS1e0pCVlIVfzBfBHwKGU0m9NWd46ZbNHgQOF\nL0+SFs/+JakUFnI134eAnwPeiIj9uWX/FfhMROwBEnAc+IWiVFgCD3/qs+UuQVJx3Pz9a9Oecpcg\nLXsLuZrveSDyrPp24cuRpMKxf0kqBe+ALkmSlIFhSpIkKQPDlCRJUgaGKUmSpAwMU5IkSRkYpiRJ\nkjIwTEmSJGVgmJIkScrAMCVJkpSBYUqSJCkDw5QkSVIGhilJkqQMDFOSJEkZGKYkSZIyMExJkiRl\nYJiSJEnKwDAlSZKUgWFKkiQpA8OUJElSBoYpSZKkDAxTkiRJGRimJEmSMjBMSZIkZVA13wYRUQc8\nB9Tmtv/TlNIXIqIZ+H/AduA48OmUUk/xSi2eqvbucpdQMKNtzeUuQbphLIf+Jan8FnJkagj4cErp\nfcAe4JGI+ADwq8B3U0q7ge/mPpekG4n9S1LRzRum0oRLuU+rcx8J+CTwZG75k8DPFqVCSVok+5ek\nUljQnKmIqIyI/UAX8HRK6UVgQ0qpM7fJGWBDkWqUpEWzf0kqtgWFqZTSWEppD7AZuDci7rxmfWLi\nr70ZIuLxiNgXEftGRgYyFyxJ16Ng/YuhElQraSm6rqv5Ukq9wLPAI8DZiGgFyP3bNctznkgp7U0p\n7a2ubsharyQtSub+RW3pipW0pMwbpiKiJSIac49XAB8D3gK+BTyW2+wx4C+KVaQkLYb9S1IpzHtr\nBKAVeDIiKpkIX19PKf1lRLwAfD0iPgecAD5dxDrL4gvPfbPcJczqSw88Wu4SpKVg2favpzr2l7uE\nWT28aU+5S5AKat4wlVJ6Hbg7z/ILwEeKUZQkFYL9S1IpeAd0SZKkDAxTkiRJGRimJEmSMjBMSZIk\nZWCYkiRJysAwJUmSlIFhSpIkKQPDlCRJUgaGKUmSpAwMU5IkSRkYpiRJkjJYyBsd3/RGT53Ou/zF\ny7eUuJLp7qs/UtbxJUnS/DwyJUmSlIFhSpIkKQPDlCRJUgaGKUmSpAwMU5IkSRl4Nd8cPt90oiTj\n/G7PtpKMI0mSCs8jU5IkSRkYpiRJkjIwTEmSJGVgmJIkScrAMCVJkpTBvGEqIuoi4scR8VpEvBkR\nX8ot/2JEtEfE/tzHJ4pfriQtnP1LUiks5NYIQ8CHU0qXIqIaeD4ivpNb99sppd8oXnmSlIn9S1LR\nzRumUkoJuJT7tDr3kYpZlCQVgv1LUiksaM5URFRGxH6gC3g6pfRibtXnI+L1iPhyRDTN8tzHI2Jf\nROwbGRkoUNmStDAF618MlaxmSUvLgsJUSmkspbQH2AzcGxF3Ar8P7AT2AJ3Ab87y3CdSSntTSnur\nqxsKVLYkLUzB+he1JatZ0tJyXVfzpZR6gWeBR1JKZ3NNahz4A+DeYhQoSYVg/5JULAu5mq8lIhpz\nj1cAHwPeiojWKZs9ChwoTomStDj2L0mlsJCr+VqBJyOikonw9fWU0l9GxB9HxB4mJnMeB36heGVK\n0qLYvyQV3UKu5nsduDvP8p8rSkWSVCD2L0ml4B3QJUmSMjBMSZIkZWCYkiRJysAwJUmSlMFCruZb\ntn63Z1tJxvnLO/LefJm/2vJoScaXpMV6eNOecpcglZ1HpiRJkjIwTEmSJGVgmJIkScrAMCVJkpSB\nYUqSJCkDr+YDqrZszrv8rx7Jv7zw4+dfPtrWXJLxJd18vMpOKh2PTEmSJGVgmJIkScrAMCVJkpSB\nYUqSJCnVlPi7AAAExElEQVQDw5QkSVIGhilJkqQMvDUC3oJAkiQtnkemJEmSMjBMSZIkZWCYkiRJ\nysAwJUmSlIFhSpIkKYNIKZVusIhzwIncp+uA8yUbfKblPP5y3vdyj78c931bSqmlxGMWnP3L8W+A\nsZf7+Dds/yppmJo2cMS+lNLesgy+zMdfzvte7vGX877fTMr9dXR8f4eX4/jl3ve5eJpPkiQpA8OU\nJElSBuUMU0+UcezlPv5y3vdyj7+c9/1mUu6vo+Mvz7GX+/jl3vdZlW3OlCRJ0s3A03ySJEkZlCVM\nRcQjEfGTiDgSEb9a4rGPR8QbEbE/IvaVYLwvR0RXRByYsqw5Ip6OiMO5f5tKPP4XI6I99zXYHxGf\nKNLYWyLi2Yg4GBFvRsQv55aXZP/nGL9U+18XET+OiNdy438pt7zo+z/H2CXZ95tZOftXbvxl08PK\n2b9yY5Wthy3n/jXP+DdkDyv5ab6IqATeBj4GnAZeAj6TUjpYovGPA3tTSiW5V0VEPABcAr6aUroz\nt+x/AN0ppV/PNeOmlNJ/KeH4XwQupZR+oxhjThm7FWhNKb0SEauAl4GfBf4lJdj/Ocb/NKXZ/wAa\nUkqXIqIaeB74ZeBTFHn/5xj7EUqw7zercvevXA3HWSY9rJz9KzdW2XrYcu5f84x/Q/awchyZuhc4\nklI6mlIaBv4v8Mky1FESKaXngO5rFn8SeDL3+EkmfkFKOX5JpJQ6U0qv5B73A4eANkq0/3OMXxJp\nwqXcp9W5j0QJ9n+OsZXNsupfUN4eVs7+lRu/bD1sOfeveca/IZUjTLUBp6Z8fpoS/oAw8c14JiJe\njojHSzjuVBtSSp25x2eADWWo4fMR8XruMHrRTjNeFRHbgbuBFynD/l8zPpRo/yOiMiL2A13A0yml\nku3/LGNDib/3N5ly9y+wh0EZfobL2cOWY/+aY3y4AXvYcpyAfn9KaQ/wM8Av5Q4jl02aOM9a6rT9\n+8BOYA/QCfxmMQeLiJXAnwG/klLqm7quFPufZ/yS7X9KaSz387YZuDci7rxmfdH2f5axS/q9V1Es\n9x5W8p/hcvaw5dq/5hj/huxh5QhT7cCWKZ9vzi0riZRSe+7fLuCbTBy2L7WzufPhV8+Ld5Vy8JTS\n2dwP6TjwBxTxa5A71/1nwJ+klL6RW1yy/c83fin3/6qUUi/wLBPn+0v6/Z86djn2/SZT1v4F9rBS\n/wyXs4fZv2aOf6P2sHKEqZeA3RGxIyJqgH8GfKsUA0dEQ24iHxHRAHwcODD3s4riW8BjucePAX9R\nysGv/iLkPEqRvga5CYR/BBxKKf3WlFUl2f/Zxi/h/rdERGPu8QomJi2/RQn2f7axS7XvN7Gy9S+w\nh0Hpfn9zY5Wthy3n/jXX+DdsD0splfwD+AQTV8S8A/y3Eo67E3gt9/FmKcYGvsbEocgRJuZXfA5Y\nC3wXOAw8AzSXePw/Bt4AXmfiF6O1SGPfz8Qh4NeB/bmPT5Rq/+cYv1T7fxfwam6cA8Cv5ZYXff/n\nGLsk+34zf5Srf+XGXlY9rJz9Kzd+2XrYcu5f84x/Q/Yw74AuSZKUwXKcgC5JklQwhilJkqQMDFOS\nJEkZGKYkSZIyMExJkiRlYJiSJEnKwDAlSZKUgWFKkiQpg/8P7bRW2xGneooAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f4159f375f8>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz\nAAALEgAACxIB0t1+/AAAIABJREFUeJzt3WlsXfd55/Hvw50USZGUZInarSV2HDWWU8V2HDfjLG5c\nB8jSTj0NisABMuMM0AlStC8m6ABt2lfBoEkxLwYB3CaIWzQtMkmKGE0a18nY4zhxHMu2YsmWbe2W\nREmUzH3f/vOCVzRpkiLFcxdR/H4Agveee+79P+eKfPTjOf9zbqSUkCRJ0tKUlboASZKk5cwwJUmS\nlIFhSpIkKQPDlCRJUgaGKUmSpAwMU5IkSRkYpiRJkjIwTEmSJGVgmJIkScqgIsuTI+I+4H8B5cDf\npZS+cqX1q8prU23F6ixDSlpmekYuXEoprSt1HXO5mh5WFdWphlVFq01S6fXSuaj+teQwFRHlwP8G\n7gXOAM9FxKMppVfme05txWru2vSHSx1S0jL04xNfO1XqGuZytT2shlXcER8uZomSSuwn6buL6l9Z\nDvPdDhxNKR1PKY0A/wx8IsPrSVIx2cMk5UWWMLUJOD3t/pncshki4qGI2B8R+0fGBzIMJ0l5tWAP\nm96/RhkuanGSlo+CT0BPKT2cUtqXUtpXVV5X6OEkKW+m969KqktdjqRrVJYwdRbYMu3+5twySVoO\n7GGS8iJLmHoO2B0RN0ZEFfAHwKP5KUuSCs4eJikvlnw2X0ppLCL+G/AYk6cVfzOl9HLeKpOkArKH\nScqXTNeZSin9CPhRnmopiDO9L3Po0mPsWftRNje8q2DjvHTxx7T1vcIHNn+Ouspr71paA6PdPHXm\nG2ysv4V3r7uv1OVI14Tl0MOuFx2pnRd4iht5JzujcL24kI6llznBYd7DB2iJG0pdjq4hmcJUIf34\nxNcAuO/GPynI6z95+u8AuGfLfy7I6y/k2XPfoXPoTMG271rw5uBpnjv/f9jZdCe7m+8qdTlSSfSn\nXs5ynE4uMkg/44xRTgV11NPEWjawlcZoLnWZ15y2dJJX2M8t7GNjbL9ux9T14ZoNU/myftUumqpb\nqa5Y2Vcurqmo5+5Nn6WirKrUpUgrQkqJExzmOJPXAG2gifVsoZIqxhmjly5Oc4w3OMJNaS9bYleJ\nK5a0VNd9mKosq6ayylOay6Kc+qqWUpchrRiXg1Q1tfwGd9AUa2etM5KGeIMjjDFaggol5cuyClPT\n5/3sanofr3c+zZuDpxhPo9RXrmVX8/u4oW7HjOe8fc7U5UNPl10+nAjMmE90of8o5/tfp3v4PMPj\nfQCsqmxhY/0tbGu8jYjItA1zjd9cs5k7Wh8A3joMefemz3Ck8xkuDBxleKyPHU23s7v5LobG+jjT\ne5BLg6cYGOtidHyIqvJaWmo2s7PpTuqr1sz73r19ztT4xCgne17kfP9rDIx2AkF91Vq2Nd7Gxvqb\n59yOSwMnOdVzgO7hc4xOjFBdXktj9Xq2Nu5lbe22qTlkAMe6fsmxrl9OPfe9G36fNbWTZ6RPpDFO\ndr9AW99hBsa6CcporFrH1sa9tNbfNO827Gy6gyOdP6dj8DQjE4O8d8Pv83rn03QPn5t33tqJ7v28\n1vEUN7V8gBtX77viv5OUxUDq4wSHCcq4jbupj7nnUVZFDbv4DSbSxIzlL6fnOMcp7uI+LnGeNk4w\nQC+NtLAv7gEm93yd5ThtnKSfHhJQTyMb2c4mdszoUYOpn5/zb7SyjXfFe2fVsT89SReX+Ej8x6ll\n0+c43cAmjnKIbt5kggkaaWYXe+YMiMNpiGMc4hLnGGOUOhrYym5qWPx1Bi/XA/AK+3kl7Z967P38\nDrWxasb8pREmQ2k/PVRSzd1x/4JztJ5Ok1Pl7o77Fz3mdBfSGU7xGn30UEYZa1jPbm6lJmoXvZ26\nfiyrMHXZ0FgPv2z7NrWVq9lYfwujE0Oc73+NFy78gPdu+D3W1G6d97m1FY3sbLqTUz0vArCt8bap\nxxqr3ppQ+Hrnz4DIHSKsZ2ximDeHTvNqx5P0DF/g3Tf8zpJqryyrZmfTnZzte4WhsR52Nt05rbaZ\nDTelcX517ruMTgyxtnYbFVFFXW6dzqEzHO9+jjU1W9hQt5vyskoGRrs433+E9oHj3NH6BzRWL/zZ\nsqPjQzx3/rv0jLTTWHUDmxr2QEpcGjzJSxd/RN/Im7yj5f0znnOk8xcc6/ol5VHJ+rpd1FQ0MDTe\nR9dQG219h1lbu431dZOHLNr6XqG5ZjMtNZunbWcjABNpnOfOf5/OoTOsqmxha+OtTEyMcb7/CL++\n+EN6Ry7yjpa7Z9U8ONrNM23fZlVlM63172QijVFRVsXWhls5OHyOM70H53ze6d6DlEU5m+qX5+RX\nLR/nOEkisYHN8wap6cpi7qvUvM6v6eISa9nAGjYQvBWQXuZXnOc01dSykRsBuEgbr/IiXVxiD3fk\nZVt66eQUr7OaFjaynSEGaecML/AUd6R7WRUNU+uOpGH28wSD9NPEGppYyzBDvMoLtLB+0WNuZDuV\nVHGRNtaxkXreeg8rqJyx7hscoYMLrKWVZm5Y8l6+qxnzDMe5RBtr2Ugz6+imgwucoZdu7kwfoSzK\nl1SDlq9lGaY6hs6wq+l97Gp+39Sy1lU38/yF73Oie/8Vw1Rd5Wp2N9/F2dxek/kmRv/m+k9RV9k0\nY1lKiYOXHqOt7xW2Du2lqab1qmuvLK9hd/NddAydYWis54oTs4fH+6mvXMPtrQ9QUTbzl7mldisf\n2vpfZ82B6hm+yLPn/pnXO3/Gvg2/u2A9hzuepGeknXc0/xY7mt76i3V8YowX23/A8e5n2bBqN43V\nk0Hz0sBJjnX9ktqK1dzR+gA1FQ0zXm9orBeYnKtWUVZNW98rtNRsnnM7T3Q/T+fQGdbWbuc96z85\n9R/Kzub38Uzbtzne/SvW1e2guWbjjOd1Dp9lx+rbZwWm+so1vNrxJGf7XmZX810z/oN6c/A0A6Od\ntK66mapy/3JUYXXxJgDNZDvjq5dO7uAjs/aKnE9vcJ7TNNDEb3IPFTHZynelPezn/3Ge06xNrWyI\n+XvhYl3i/KwJ2WfScV7lBU5zhJt5z9TyYxxikH62sIubYu/U8i1pJ8/xxKLH3BjbITEVbK40GbyD\ndvbxwcyT+K9mzDc5z+18eEZQPpie5QKnuUgb62dcC1YrQcE/TqYQaioa2dk086+udXXbqSlvoHv4\nfF7GeHuQAoiIqT1ZlwZP5mWchdzU8h9mBSmA6vK6OSeTN1avo6V2Cx1Dp5lI41d87ZHxQc71Haax\nav2MIAVQXlbBO5o/AMC5/lenlp/qOQDAzS0fmBWkgDmXzeds76Hca90zI/hUl9exK/fve6b34Kzn\nVZXXsav5zlnLy8sq2NTwLobH+2kfODrjsdO9LwGwpeHdi65PWqoRhgCoZnZwH0z9HEsvz/h6Ix2Z\n83W2cdOsIAXQxkkAdrFnKkgBlEcFu9kDwFlOZN0MAFazZlaw2Mh2gqCbzqllE2mCc7xBORXsZObe\n38ZoYQPZg91cNnFj0c+G3MKuWXscN+X2DnbTUdRadG1YlnumGqvWEXPsFq+paKBr+FxexhgZH+RE\n934uDpxgcKyb8TRz1/FQbh5VIZVFOQ1Vs+ckXNY+cJzTPS/RM3KBkfFBEjPnXYyMD1JTUT/v87uH\nz5NIBJOH7t4u5eZx9I281Rwuv79ra7dfxZbMNjYxwsBYF9Xl9XNOjG+pmWy8PSPtsx5rqFpHWcz9\no7u14VZOdj/P6Z6DbFj1DmDyfWgfOMqqyhZaajfP+TypWAbp5wSHZyyroY6t7J61biNznzTSSxcw\n956vJtYRxNQ6WTUyO6iURRlVqYYxRqaWDdDLBOM0sZaKmP0HYDPrOMepvNQ03ep53qNCmus9uTwn\nzJMJVqZlGaYqyuY+O28yYKXMrz86PsQzbd9mcKyb1dUb2Fh/C5VlNUQEYxPDnOp5ccG9PvlQVVY3\n70T3k90v8GrHk1SWVbOmdhs1FQ2U5xpY+8AxekcuLljj6MTkX8/dIxfoHrkw73rj6a2GOTYxTGVZ\nDeVz7C27GmMTwwBUl899yYrLyy+vN9djc6mrbGJt7XYuDZ5kYLSLusomzva9zEQad6+UiqaKGvrp\nZZjBWY+1xA18hMmJ3hNpgv/L9+d9nWpq5lw+xiiVVM0516osyqhMVYww+3dnKd4+X+iyIEjT+u3l\nEFE1zwdCV82zLVkV6nWvZK735PJ8tpSH/4O0/CzLMFVoZ/oOMTjWPefFJjuH2qYmrxfcPEFqIk1w\ntOsZqstX8b6Nfzhr79Ni985dDqXbGt/DO9fcs+jnjE4MMj4xmilQXR57ZLx/zseHc8vnC85XsrXh\nVi4NnuR070FuavmtaRPPb1lyvdLVaGINnVykk/apwz/5VEElo4wwkSZmBaqJNMEoIzP+w1/oP/p8\n7E25PN58Ie7yoc9iWcw2zxcUpau1LOdM5UMQ8LbTkS8bGJ3cPb5h1ezd7p1DZ/I3Pm8dSrsao+OD\njE0M01TdOitIjU2M0DM8+9DYXFZXbwCCzqGzix67qXpy0v1i5oy9tVdtdjOrKJs8M3FovI/+0c5Z\nj3cMnQZmnmG5WOvqdlBT3sDZ3pe5NHCSgdFONqy6icry4v8Fq5WpNTen6AJn6U89eX/9BibndHZx\ncdZjXVwikabWgbeCzhADs9YfS6MMkH3aQh0NlFFOL12MpdnhrHOOWq8k656eSibnlM61d3Ag9c0Z\nIN27pKVasWGqqqyGkdwelre7fOp+x+DM4NQz3M7xrl/lZ/zcGWWDubPfru65dZRHBd0j7YxNvHUI\nbiKNc/jNJxidmN085lJdXsfG+pvpGbnA0c5fzhnsBka7GBjtnrq/rXHyDJ1XO56aOnNvuunLqsqu\nvI2bGiYnyr7W8dSMsUfGB6euS7U5t87ViAi2NL6bkYkBDl76d8CJ5yquuqjnRt5JYoIXeZqudGnO\n9bKcxg9wlEOMp7Gp5eNpjKMczK3z1h6xiqikjga6eZO+aeEupcTr/JoJsk9bKIsyWtnKOGMcY+bn\nRfekDs7zxlW93uUwNFcAXIw6Giingou0MZLe2is2nsZ5jQMFGVMr14o9zNdSu5XukQvsv/B9Wmo2\nU0Y5DdXruKFuJxvrb+FE934OdzxJx9Bp6iqbGBjton3gOOtX7eZ8/2vZx6/Zyvn+13mx/VHW1d5I\neVRQU9HIpoaFD0VFBFsbb+NE93P8/Ozfc0PdTibSBB1DpxkdH6KlZsvUnp2F3LLmQ/SPdnG06xe5\na0Jtoqq8juHxfvpH3qR75AK3rrt/6iKYa+u2s7PpDo51PcvPzjzC+lU7qSlvYGR8gM7hs6yubp26\nKOiqymaqy+s51/caZZRRU9FIMHlx1NrKRm5cvY9LAydpHzjGz8/+A+vqbmR8YpTz/UcYmRjgxtX7\naK7ZtKT3d3PDHo52/pLh8T7qK9fOuryCVGiTYWryI2X28yQNqZnVNFNBFWOMMkQ/HUzuRW5i/hNN\n5rIhtnIxtXGBMzzDv7MubSQILtLGIP2sZzOtb7sswjbewWGeZz9PsD5N9rwO2kkk6llNH93zjLZ4\nO9lDB+2c5ii9qXPqOlMXOM0aNnCJxZ8gtJo1lFHOGxxhNI1MzY3ayq45J7i/XVmUsTXt5gSHeZaf\nsC5tIpHo4ALV1Mw5Hy3rmFq5VmyY2tl0J2MTw7QPHKdrqI1EYmP9LdxQt5OainruaP1PvNb5MzqH\nznJp8CSrKlu4Ze2HWVOzNS9hakvDHobGejjX/xonuveTmKC5ZvOiwhTA7ub3U1Vex5neg5zufYmK\nsmrW1mxjd/P7OdI1+8y8+VSUVXNH6wOc7n2Jc32vcqH/CONpnOryOuoqm7i55R7W1G6bNXZTdSun\nel7k4sBxxibGpq6APn1eUkQZ71n/cV7r+Bnn+19nLDeRvalmE7WVjZRFOfs2/B4ne57nXN+rnOp5\nkaCMhqp13Nx4z7xXX1+M6vJVrKvbTvvAMbY0uldKxRcR7ORdbEhbOcMxOrnIeU7P+KDjTeyglW1L\nOrV/D3fQxDraODl1GYRVNHATe9nMzlnrb4obIU1e5LKNU1RSyTo2spM9vMQzmbcXoCqq2Zc+yFEO\ncYk2euikjgZu5j3UUHdVYaoyqnh3eh8neIVznGQ8t/esla2Lnuu0g1sop5yznOAsx6mihg1sYQe3\n8Az/XpAxtTJFSsU7Nry6ekO6a9MfFm08vaVvpIOnz36LzQ2/wZ6195a6nIJLKfHUmW8yMt7PB7d+\nfkkT2ZUfPz7xtedTSsv+83saoyXdER8udRmSiugn6buL6l8rds7USjOQm+RdU774i2ouZ+f7X2dw\nrJuN9bcYpCRJBbViD/OtFL0jF2nrO0xb36tAsH7VrlKXVFDHu37F6MQQp3sPUh6V7Gi6HYCRzcW/\nsF+hVJ3xCsuSdC0xTF3nuofbOdVzgPrKFt619iNXvKL69eD1zqcJyqivWsNNLR+YOjNTkqRCMUxd\n5zY3vIvNDe9aeMXrxH03/kmpS5AkrTDOmZIkScrAMCVJkpSBYUqSJCkDw5QkSVIGmSagR8RJoBcY\nB8auhwvzaWV5/DvfKnUJc7r3gc+WuoQVwR6m5eyxtrk/Y7DUPrpxb6lLKLp8nM33wZTm+RRPSbr2\n2cMkZeJhPkmSpAyyhqkE/CQino+Ih+ZaISIeioj9EbF/ZHwg43CSlFdX7GHT+9cowyUoT9JykPUw\n390ppbMRcQPweES8mlJ6avoKKaWHgYdh8oOOM44nSfl0xR42vX81Rov9S9KcMu2ZSimdzX1vB/4F\nuD0fRUlSMdjDJOXDksNURKyKiIbLt4HfBg7lqzBJKiR7mKR8yXKYbz3wLxFx+XW+nVL6cV6qkqTC\ns4dJyoslh6mU0nHg1jzWIklFYw+TlC9eGkGSJCkDw5QkSVIGhilJkqQMDFOSJEkZGKYkSZIyMExJ\nkiRlYJiSJEnKwDAlSZKUgWFKkiQpA8OUJElSBoYpSZKkDAxTkiRJGRimJEmSMjBMSZIkZWCYkiRJ\nysAwJUmSlIFhSpIkKQPDlCRJUgaGKUmSpAwMU5IkSRkYpiRJkjIwTEmSJGWwYJiKiG9GRHtEHJq2\nrCUiHo+II7nvzYUtU5KWxh4mqdAWs2fqW8B9b1v2JeCnKaXdwE9z9yXpWvQt7GGSCmjBMJVSegro\neNviTwCP5G4/Anwyz3VJUl7YwyQV2lLnTK1PKZ3L3T4PrM9TPZJUDPYwSXmTeQJ6SikBab7HI+Kh\niNgfEftHxgeyDidJeXWlHja9f40yXOTKJC0XSw1TFyKiFSD3vX2+FVNKD6eU9qWU9lWV1y1xOEnK\nq0X1sOn9q5LqohYoaflYaph6FHgwd/tB4Af5KUeSisIeJilvKhZaISL+CbgHWBsRZ4C/AL4CfCci\nPgecAh4oZJFSodz7wGdLXcJV++EvHi11CXP62F0fL3UJc7KH6Xr10Y17S13CVXus7UCpS5hT1vdy\nwTCVUvr0PA99ONPIklQE9jBJheYV0CVJkjIwTEmSJGVgmJIkScrAMCVJkpTBghPQpetB1Zm3f5qI\nJEn54Z4pSZKkDAxTkiRJGRimJEmSMjBMSZIkZWCYkiRJysAwJUmSlIFhSpIkKQPDlCRJUgaGKUmS\npAwMU5IkSRkYpiRJkjIwTEmSJGVgmJIkScrAMCVJkpSBYUqSJCkDw5QkSVIGhilJkqQMDFOSJEkZ\nLBimIuKbEdEeEYemLftyRJyNiAO5r/sLW6YkLY09TFKhLWbP1LeA++ZY/jcppb25rx/ltyxJyptv\nYQ+TVEALhqmU0lNARxFqkaS8s4dJKrQsc6a+EBEv5XahN8+3UkQ8FBH7I2L/yPhAhuEkKa8W7GHT\n+9cow8WuT9IysdQw9XVgB7AXOAd8db4VU0oPp5T2pZT2VZXXLXE4ScqrRfWw6f2rkupi1idpGVlS\nmEopXUgpjaeUJoC/BW7Pb1mSVDj2MEn5tKQwFRGt0+5+Cjg037qSdK2xh0nKp4qFVoiIfwLuAdZG\nxBngL4B7ImIvkICTwOcLWKMkLZk9TFKhLRimUkqfnmPxNwpQiyTlnT1MUqF5BXRJkqQMDFOSJEkZ\nGKYkSZIyMExJkiRlsOAEdEnXlo/d9fFSlyBJS/LRjXtLXUJBuGdKkiQpA8OUJElSBoYpSZKkDAxT\nkiRJGRimJEmSMlhRZ/ONnXxjzuV/fvyFIleyOH+14z3zPlaxfWsRK5F0rXqs7UCpS5jT9XrWljQX\n90xJkiRlYJiSJEnKwDAlSZKUgWFKkiQpA8OUJElSBoYpSZKkDFbUpRHm8/4aM6UkSVoaU4QkSVIG\nhilJkqQMDFOSJEkZGKYkSZIyMExJkiRlsGCYiogtEfFERLwSES9HxBdzy1si4vGIOJL73lz4ciVp\n8exfkophMXumxoA/TSndAtwJ/FFE3AJ8CfhpSmk38NPcfUm6lti/JBXcgmEqpXQupfRC7nYvcBjY\nBHwCeCS32iPAJwtVpCQthf1LUjFc1UU7I2I7cBvwLLA+pXQu99B5YP08z3kIeAigprxhqXVKUiaZ\n+xd1hS9S0rK06AnoEVEPfA/445RSz/THUkoJSHM9L6X0cEppX0ppX1W5zUhS8eWjf1VSXYRKJS1H\niwpTEVHJZCP6x5TS93OLL0REa+7xVqC9MCVK0tLZvyQV2mLO5gvgG8DhlNLXpj30KPBg7vaDwA/y\nX54kLZ39S1IxLGbO1PuBzwAHI+JAbtmfAV8BvhMRnwNOAQ8UpkRJWjL7l6SCWzBMpZSeBmKehz+c\n33IkKX/sX5KKwSugS5IkZWCYkiRJysAwJUmSlIFhSpIkKQPDlCRJUgaGKUmSpAwMU5IkSRkYpiRJ\nkjIwTEmSJGVgmJIkScrAMCVJkpSBYUqSJCkDw5QkSVIGhilJkqQMDFOSJEkZGKYkSZIyqCh1AdeC\nnw9NlLoESZK0TLlnSpIkKQPDlCRJUgaGKUmSpAwMU5IkSRkYpiRJkjJYMExFxJaIeCIiXomIlyPi\ni7nlX46IsxFxIPd1f+HLlaTFs39JKobFXBphDPjTlNILEdEAPB8Rj+ce+5uU0l8Xrrzi+Ksd7yl1\nCZIK47rvXx/duLfUJUgr3oJhKqV0DjiXu90bEYeBTYUuTJKysn9JKoarmjMVEduB24Bnc4u+EBEv\nRcQ3I6I5z7VJUt7YvyQVyqLDVETUA98D/jil1AN8HdgB7GXyL7+vzvO8hyJif0TsHxkfyEPJknR1\n8tG/RhkuWr2SlpdFhamIqGSyEf1jSun7ACmlCyml8ZTSBPC3wO1zPTel9HBKaV9KaV9VeV2+6pak\nRclX/6qkunhFS1pWFnM2XwDfAA6nlL42bXnrtNU+BRzKf3mStHT2L0nFsJiz+d4PfAY4GBEHcsv+\nDPh0ROwFEnAS+HxBKsyjiu1bS12CpOK6bvqXpGvXYs7mexqIOR76Uf7LkaT8sX9JKgavgC5JkpSB\nYUqSJCkDw5QkSVIGhilJkqQMDFOSJEkZGKYkSZIyMExJkiRlYJiSJEnKwDAlSZKUgWFKkiQpA8OU\nJElSBoYpSZKkDAxTkiRJGRimJEmSMjBMSZIkZWCYkiRJysAwJUmSlIFhSpIkKQPDlCRJUgaGKUmS\npAwMU5IkSRkYpiRJkjIwTEmSJGWwYJiKiJqI+FVE/DoiXo6Iv8wtb4mIxyPiSO57c+HLlaTFs39J\nKobF7JkaBj6UUroV2AvcFxF3Al8CfppS2g38NHdfkq4l9i9JBbdgmEqT+nJ3K3NfCfgE8Ehu+SPA\nJwtSoSQtkf1LUjEsas5URJRHxAGgHXg8pfQssD6ldC63ynlgfYFqlKQls39JKrRFhamU0nhKaS+w\nGbg9Iva87fHE5F97s0TEQxGxPyL2j4wPZC5Ykq5GvvrXKMNFqFbScnRVZ/OllLqAJ4D7gAsR0QqQ\n+94+z3MeTintSyntqyqvy1qvJC1J1v5VSXXxipW0rCzmbL51EdGUu10L3Au8CjwKPJhb7UHgB4Uq\nUpKWwv4lqRgqFrFOK/BIRJQzGb6+k1L614h4BvhORHwOOAU8UMA6JWkp7F+SCm7BMJVSegm4bY7l\nbwIfLkRRkpQP9i9JxeAV0CVJkjIwTEmSJGVgmJIkScrAMCVJkpTBYs7m0xx++ItHS13CnD5218dL\nXYKka9xjbQdKXcKcPrpxb6lLkJbEPVOSJEkZGKYkSZIyMExJkiRlYJiSJEnKwDAlSZKUgWFKkiQp\nA8OUJElSBoYpSZKkDAxTkiRJGRimJEmSMjBMSZIkZWCYkiRJysAwJUmSlIFhSpIkKQPDlCRJUgaG\nKUmSpAwMU5IkSRkYpiRJkjKoWGiFiKgBngKqc+t/N6X0FxHxZeC/ABdzq/5ZSulHhSq0kH74i0dL\nXYKkAlgJ/euxtgOlLkFa8RYMU8Aw8KGUUl9EVAJPR8S/5R77m5TSXxeuPEnKxP4lqeAWDFMppQT0\n5e5W5r5SIYuSpHywf0kqhkXNmYqI8og4ALQDj6eUns099IWIeCkivhkRzfM896GI2B8R+0fGB/JU\ntiQtTr761yjDRatZ0vKyqDCVUhpPKe0FNgO3R8Qe4OvADmAvcA746jzPfTiltC+ltK+qvC5PZUvS\n4uSrf1VSXbSaJS0vV3U2X0qpC3gCuC+ldCHXpCaAvwVuL0SBkpQP9i9JhbJgmIqIdRHRlLtdC9wL\nvBoRrdNW+xRwqDAlStLS2L8kFcNizuZrBR6JiHImw9d3Ukr/GhH/EBF7mZzMeRL4fOHKlKQlsX9J\nKrjFnM33EnDbHMs/U5CKJClP7F+SisEroEuSJGVgmJIkScrAMCVJkpSBYUqSJCkDw5QkSVIGhilJ\nkqQMDFOSJEkZGKYkSZIyMExJkiRlYJiSJEnKYDGfzac8+NhdHy91CZK0JB/duLfUJUjXNPdMSZIk\nZWCYkiRJysAwJUmSlIFhSpIkKQPDlCRJUgaGKUmSpAy8NAJetkDS8uVlC6TSc8+UJElSBoYpSZKk\nDAxTkiRJGRimJEmSMjBMSZIkZRAppeINFnEROJW7uxa4VLTBZ1vJ46/kbS/1+Ctx27ellNYVecy8\ns385/jUKzCJuAAAEZElEQVQw9kof/5rtX0UNUzMGjtifUtpXksFX+PgredtLPf5K3vbrSanfR8f3\nd3gljl/qbb8SD/NJkiRlYJiSJEnKoJRh6uESjr3Sx1/J217q8Vfytl9PSv0+Ov7KHHulj1/qbZ9X\nyeZMSZIkXQ88zCdJkpRBScJURNwXEa9FxNGI+FKRxz4ZEQcj4kBE7C/CeN+MiPaIODRtWUtEPB4R\nR3Lfm4s8/pcj4mzuPTgQEfcXaOwtEfFERLwSES9HxBdzy4uy/VcYv1jbXxMRv4qIX+fG/8vc8oJv\n/xXGLsq2X89K2b9y46+YHlbK/pUbq2Q9bCX3rwXGvyZ7WNEP80VEOfA6cC9wBngO+HRK6ZUijX8S\n2JdSKsq1KiLiA0Af8PcppT25Zf8T6EgpfSXXjJtTSv+9iON/GehLKf11IcacNnYr0JpSeiEiGoDn\ngU8Cn6UI23+F8R+gONsfwKqUUl9EVAJPA18EfpcCb/8Vxr6PImz79arU/StXw0lWSA8rZf/KjVWy\nHraS+9cC41+TPawUe6ZuB46mlI6nlEaAfwY+UYI6iiKl9BTQ8bbFnwAeyd1+hMlfkGKOXxQppXMp\npRdyt3uBw8AmirT9Vxi/KNKkvtzdytxXogjbf4Wxlc2K6l9Q2h5Wyv6VG79kPWwl968Fxr8mlSJM\nbQJOT7t/hiL+gDD5j/GTiHg+Ih4q4rjTrU8pncvdPg+sL0ENX4iIl3K70Qt2mPGyiNgO3AY8Swm2\n/23jQ5G2PyLKI+IA0A48nlIq2vbPMzYU+d/+OlPq/gX2MCjBz3Ape9hK7F9XGB+uwR62Eieg351S\n2gv8DvBHud3IJZMmj7MWO21/HdgB7AXOAV8t5GARUQ98D/jjlFLP9MeKsf1zjF+07U8pjed+3jYD\nt0fEnrc9XrDtn2fsov7bqyBWeg8r+s9wKXvYSu1fVxj/muxhpQhTZ4Et0+5vzi0ripTS2dz3duBf\nmNxtX2wXcsfDLx8Xby/m4CmlC7kf0gngbynge5A71v094B9TSt/PLS7a9s81fjG3/7KUUhfwBJPH\n+4v67z997FJs+3WmpP0L7GHF/hkuZQ+zf80e/1rtYaUIU88BuyPixoioAv4AeLQYA0fEqtxEPiJi\nFfDbwKErP6sgHgUezN1+EPhBMQe//IuQ8ykK9B7kJhB+AzicUvratIeKsv3zjV/E7V8XEU2527VM\nTlp+lSJs/3xjF2vbr2Ml619gD4Pi/f7mxipZD1vJ/etK41+zPSylVPQv4H4mz4g5BvyPIo67A/h1\n7uvlYowN/BOTuyJHmZxf8TlgDfBT4AjwE6ClyOP/A3AQeInJX4zWAo19N5O7gF8CDuS+7i/W9l9h\n/GJt/7uBF3PjHAL+PLe84Nt/hbGLsu3X81ep+ldu7BXVw0rZv3Ljl6yHreT+tcD412QP8wrokiRJ\nGazECeiSJEl5Y5iSJEnKwDAlSZKUgWFKkiQpA8OUJElSBoYpSZKkDAxTkiRJGRimJEmSMvj/ewtH\ncKaWmLUAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f4159e2a2e8>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nKQPDlCRJUgaGKUmSpAz+P33YRCX/1sneAAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f4159d0f860>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f4159d33128>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f4159b71f60>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f4159a64da0>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\notM7dNPOycMAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f415994e358>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f415995e0f0>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nkiQpg/8PuVCKyVZBTwgAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f41597aea58>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nSZKkDP4/4JbfO0xlN0QAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f41596a0860>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAlMAAAEgCAYAAACQH/YaAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nwDAlSZKUwf8HD4NxRaiqXe8AAAAASUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f4159587dd8>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "# And then compare the predictions\n",
    "# to the ground truth\n",
    "track2 = noisy_movies[which][::, ::, ::, ::]\n",
    "for i in range(15):\n",
    "    fig = plt.figure(figsize=(10, 5))\n",
    "\n",
    "    ax = fig.add_subplot(121)\n",
    "\n",
    "    if i >= 7:\n",
    "        ax.text(1, 3, 'Predictions !', fontsize=20, color='w')\n",
    "    else:\n",
    "        ax.text(1, 3, 'Inital trajectory', fontsize=20)\n",
    "\n",
    "    toplot = track[i, ::, ::, 0]\n",
    "\n",
    "    plt.imshow(toplot)\n",
    "    ax = fig.add_subplot(122)\n",
    "    plt.text(1, 3, 'Ground truth', fontsize=20)\n",
    "\n",
    "    toplot = track2[i, ::, ::, 0]\n",
    "    if i >= 2:\n",
    "        toplot = shifted_movies[which][i - 1, ::, ::, 0]\n",
    "\n",
    "    plt.imshow(toplot)\n",
    "    plt.savefig('imgs/convlstm/%i_animate.png' % (i + 1))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {
    "collapsed": true
   },
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "Python 3",
   "language": "python",
   "name": "python3"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.5.3"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 1
}
